Development of an Armband EMG Module and a Pattern Recognition Algorithm for the 5-Finger Myoelectric Hand Prosthesis

被引:0
作者
Seongjung Kim
Jongman Kim
Bummo Koo
Taehee Kim
Haneul Jung
Sehoon Park
Seunggi Kim
Youngho Kim
机构
[1] Yonsei University,Department of Biomedical Engineering
[2] Korea Orthopedics and Rehabilitation Engineering Center,undefined
来源
International Journal of Precision Engineering and Manufacturing | 2019年 / 20卷
关键词
Electromyography; Pattern recognition; Artificial neural network; Armband system; Hand prosthesis;
D O I
暂无
中图分类号
学科分类号
摘要
A robust algorithm to classify various hand postures using EMG signals is needed for the EMG-based electric hand prosthesis with the multiple degrees of freedom. In this study, an armband-type multi-channel EMG module was designed, and an algorithm for classifying seven different types of hand postures was developed using the artificial neural network (ANN). The classification accuracy was evaluated for ten normal volunteers, according to the independence of the EMG feature groups, donning and doffing training data size, and whether or not majority voting was applied. The results revealed an optimized accuracy of 97.49 ± 3.87% when majority voting was applied after using high independence feature group (HIFG) to perform classification training for seven or more sessions. The algorithm was successfully applied to provide seven different hand postures in a 5-finger myoelectric hand prosthesis. Confusion matrices and separability indexes of ANN classifiers showed that the major misclassifications, in spite of a good accuracy, were found to be lateral pinch versus palmar pinch, and index versus thumb-up. However, with the classification training for seven or more sessions, the probability of misclassification significantly decreased.
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页码:1997 / 2006
页数:9
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